Improving Performance and Convergence Rates in Multi-Layer Feed Forward Neural Network Intrusion Detection Systems

Author:

Ray Loye Lynn1,Felch Henry2

Affiliation:

1. University of Maryland, College Park, MD, USA

2. University of Maine, Orono, ME, USA

Abstract

Today's anomaly-based network intrusion detection systems (IDSs) are plagued with detecting new and unknown attacks. The review of the literature builds ideas for researching the problem of detecting these attacks using multi-layered feed forward neural network (MLFFNN) IDSs. The scope of the paper focused on a review of the literature from primarily 2008 to the present found in peer-review and scholarly journals. A key word search was used to compare and contrast the literature to find strengths, weaknesses and gaps. The significance of the research found that further work is needed to improve the performance and convergence rates of MLFFNN IDSs. This literature review contributes to the area of intrusion detection by looking at the effects of architecture, algorithms, and input data on the performance and convergence rates of MLFFNN IDSs.

Publisher

IGI Global

Subject

General Materials Science

Reference54 articles.

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2. Application of artificial neural network in detection of DOS attacks

3. Development of genetic-based machine learning for network intrusion detection (GBML-NID). World Academy of Science;W. S.Al-Sharafat;Engineering and Technology,2009

4. Input data processing techniques in intrusion detection systems: Short review.;S. H.Amer;Global Journal of Computer Science and Technology,2009

5. New supervised multi layer feed forward neural network model to accelerate classification with high accuracy.;R.Asadi;European Journal of Scientific Research,2008

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